Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions

Abstract Background The analysis of associations between accelerometer-derived physical activity (PA) intensities and cardiometabolic health is a major challenge due to multicollinearity between the explanatory variables. This challenge has facilitated the application of different analytic approache...

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Main Authors: Eivind Aadland, Olav Martin Kvalheim, Sigmund Alfred Anderssen, Geir Kåre Resaland, Lars Bo Andersen
Format: Article
Language:English
Published: BMC 2019-08-01
Series:International Journal of Behavioral Nutrition and Physical Activity
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12966-019-0836-z
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spelling doaj-1c4a33e0199540c48a5570e25996d7312020-11-25T03:48:49ZengBMCInternational Journal of Behavioral Nutrition and Physical Activity1479-58682019-08-0116111410.1186/s12966-019-0836-zMulticollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutionsEivind Aadland0Olav Martin Kvalheim1Sigmund Alfred Anderssen2Geir Kåre Resaland3Lars Bo Andersen4Faculty of Education, Arts and Sports, Department of Sport, Food and Natural Sciences, Campus Sogndal, Western Norway University of Applied SciencesDepartment of Chemistry, University of BergenFaculty of Education, Arts and Sports, Department of Sport, Food and Natural Sciences, Campus Sogndal, Western Norway University of Applied SciencesFaculty of Education, Arts and Sports, Department of Sport, Center for Physically Active Learning, Campus Sogndal, Western Norway University of Applied SciencesFaculty of Education, Arts and Sports, Department of Sport, Food and Natural Sciences, Campus Sogndal, Western Norway University of Applied SciencesAbstract Background The analysis of associations between accelerometer-derived physical activity (PA) intensities and cardiometabolic health is a major challenge due to multicollinearity between the explanatory variables. This challenge has facilitated the application of different analytic approaches within the field. The aim of the present study was to compare association patterns of PA intensities with cardiometabolic health in children obtained from multiple linear regression, compositional data analysis, and multivariate pattern analysis. Methods A sample of 841 children (age 10.2 ± 0.3 years; BMI 18.0 ± 3.0; 50% boys) provided valid accelerometry and cardiometabolic health data. Accelerometry (ActiGraph GT3X+) data were characterized into traditional (four PA intensity variables) and more detailed categories (23 PA intensity variables covering the intensity spectrum; 0–99 to ≥10,000 counts per minute). Several indices of cardiometabolic health were used to create a composite cardiometabolic health score. Multiple linear regression and multivariate pattern analyses were used to analyze both raw and compositional data. Results Besides a consistent negative (favorable) association between vigorous PA and the cardiometabolic health measure using the traditional description of PA data, associations between PA intensities and cardiometabolic health differed substantially depending on the analytic approaches used. Multiple linear regression lead to instable and spurious associations, while compositional data analysis showed distorted association patterns. Multivariate pattern analysis appeared to handle the raw PA data correctly, leading to more plausible interpretations of the associations between PA intensities and cardiometabolic health. Conclusions Future studies should consider multivariate pattern analysis without any transformation of PA data when examining relationships between PA intensity patterns and health outcomes. Trial registration The study was registered in Clinicaltrials.gov 7th of April 2014 with identification number NCT02132494.http://link.springer.com/article/10.1186/s12966-019-0836-zMultivariate pattern analysisCompositional data analysisMultiple linear regressionMulticollinearityStatisticsChildren
collection DOAJ
language English
format Article
sources DOAJ
author Eivind Aadland
Olav Martin Kvalheim
Sigmund Alfred Anderssen
Geir Kåre Resaland
Lars Bo Andersen
spellingShingle Eivind Aadland
Olav Martin Kvalheim
Sigmund Alfred Anderssen
Geir Kåre Resaland
Lars Bo Andersen
Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
International Journal of Behavioral Nutrition and Physical Activity
Multivariate pattern analysis
Compositional data analysis
Multiple linear regression
Multicollinearity
Statistics
Children
author_facet Eivind Aadland
Olav Martin Kvalheim
Sigmund Alfred Anderssen
Geir Kåre Resaland
Lars Bo Andersen
author_sort Eivind Aadland
title Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
title_short Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
title_full Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
title_fullStr Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
title_full_unstemmed Multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
title_sort multicollinear physical activity accelerometry data and associations to cardiometabolic health: challenges, pitfalls, and potential solutions
publisher BMC
series International Journal of Behavioral Nutrition and Physical Activity
issn 1479-5868
publishDate 2019-08-01
description Abstract Background The analysis of associations between accelerometer-derived physical activity (PA) intensities and cardiometabolic health is a major challenge due to multicollinearity between the explanatory variables. This challenge has facilitated the application of different analytic approaches within the field. The aim of the present study was to compare association patterns of PA intensities with cardiometabolic health in children obtained from multiple linear regression, compositional data analysis, and multivariate pattern analysis. Methods A sample of 841 children (age 10.2 ± 0.3 years; BMI 18.0 ± 3.0; 50% boys) provided valid accelerometry and cardiometabolic health data. Accelerometry (ActiGraph GT3X+) data were characterized into traditional (four PA intensity variables) and more detailed categories (23 PA intensity variables covering the intensity spectrum; 0–99 to ≥10,000 counts per minute). Several indices of cardiometabolic health were used to create a composite cardiometabolic health score. Multiple linear regression and multivariate pattern analyses were used to analyze both raw and compositional data. Results Besides a consistent negative (favorable) association between vigorous PA and the cardiometabolic health measure using the traditional description of PA data, associations between PA intensities and cardiometabolic health differed substantially depending on the analytic approaches used. Multiple linear regression lead to instable and spurious associations, while compositional data analysis showed distorted association patterns. Multivariate pattern analysis appeared to handle the raw PA data correctly, leading to more plausible interpretations of the associations between PA intensities and cardiometabolic health. Conclusions Future studies should consider multivariate pattern analysis without any transformation of PA data when examining relationships between PA intensity patterns and health outcomes. Trial registration The study was registered in Clinicaltrials.gov 7th of April 2014 with identification number NCT02132494.
topic Multivariate pattern analysis
Compositional data analysis
Multiple linear regression
Multicollinearity
Statistics
Children
url http://link.springer.com/article/10.1186/s12966-019-0836-z
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